While fat-tailed densities commonly arise as posterior and marginal distributions in robust models and scale mixtures, they present challenges when Gaussian-based variational inference fails to capture tail decay accurately. We first improve previous theory on tails of Lipschitz flows by quantifying how the tails affect the rate of tail decay and by expanding the theory to non-Lipschitz polynomial flows. Then, we develop an alternative theory for multivariate tail parameters which is sensitive to tail-anisotropy. In doing so, we unveil a fundamental problem which plagues many existing flow-based methods: they can only model tail-isotropic distributions (i.e., distributions having the same tail parameter in every direction). To mitigate this and enable modeling of tail-anisotropic targets, we propose anisotropic tail-adaptive flows (ATAF). Experimental results on both synthetic and real-world targets confirm that ATAF is competitive with prior work while also exhibiting appropriate tail-anisotropy.
翻译:虽然脂肪尾尾部密度通常作为强力模型和规模混合物的后端和边际分布而出现,但是当高山的变异性推断未能准确捕捉尾部衰变时,它们提出了挑战。我们首先通过量化尾部如何影响尾部衰减速度,并通过将理论扩大到非利普西茨多元流动,改进了对利普西茨尾部流尾部的先前理论。然后,我们为多变量尾部参数开发了另一个理论,该理论对尾部和规模混合物敏感。我们这样做,暴露了一个困扰许多现有流动方法的根本问题:它们只能模拟尾部-异地分布(即每个方向都有相同尾部参数的分布 ) 。为了减轻这一影响,并且能够模拟尾部-异地目标,我们提议对尾部适应性流(ATF)进行模拟。关于合成和现实世界目标的实验结果都证实亚底部和亚底部与先前的工作都具有竞争力,同时展示适当的尾部异性。